"""Embeddings unit tests."""

import os
from abc import abstractmethod
from unittest import mock

import pytest
from langchain_core.embeddings import Embeddings
from pydantic import SecretStr

from langchain_tests.base import BaseStandardTests


class EmbeddingsTests(BaseStandardTests):
    """Embeddings tests base class."""

    @property
    @abstractmethod
    def embeddings_class(self) -> type[Embeddings]:
        """Embeddings class."""

    @property
    def embedding_model_params(self) -> dict:
        """Embeddings model parameters."""
        return {}

    @pytest.fixture
    def model(self) -> Embeddings:
        """Embeddings model fixture."""
        return self.embeddings_class(**self.embedding_model_params)


class EmbeddingsUnitTests(EmbeddingsTests):
    """Base class for embeddings unit tests.

    Test subclasses must implement the `embeddings_class` property to specify the
    embeddings model to be tested. You can also override the
    `embedding_model_params` property to specify initialization parameters.

    ```python
    from typing import Type

    from langchain_tests.unit_tests import EmbeddingsUnitTests
    from my_package.embeddings import MyEmbeddingsModel


    class TestMyEmbeddingsModelUnit(EmbeddingsUnitTests):
        @property
        def embeddings_class(self) -> Type[MyEmbeddingsModel]:
            # Return the embeddings model class to test here
            return MyEmbeddingsModel

        @property
        def embedding_model_params(self) -> dict:
            # Return initialization parameters for the model.
            return {"model": "model-001"}
    ```
    !!! note
        API references for individual test methods include troubleshooting tips.

    Testing initialization from environment variables
        Overriding the `init_from_env_params` property will enable additional tests
        for initialization from environment variables. See below for details.

        ??? note "`init_from_env_params`"

            This property is used in unit tests to test initialization from
            environment variables. It should return a tuple of three dictionaries
            that specify the environment variables, additional initialization args,
            and expected instance attributes to check.

            Defaults to empty dicts. If not overridden, the test is skipped.

            ```python
            @property
            def init_from_env_params(self) -> Tuple[dict, dict, dict]:
                return (
                    {
                        "MY_API_KEY": "api_key",
                    },
                    {
                        "model": "model-001",
                    },
                    {
                        "my_api_key": "api_key",
                    },
                )
            ```
    """

    def test_init(self) -> None:
        """Test model initialization.

        ??? note "Troubleshooting"

            If this test fails, ensure that `embedding_model_params` is specified
            and the model can be initialized from those params.
        """
        model = self.embeddings_class(**self.embedding_model_params)
        assert model is not None

    @property
    def init_from_env_params(self) -> tuple[dict, dict, dict]:
        """Init from env params.

        This property is used in unit tests to test initialization from environment
        variables. It should return a tuple of three dictionaries that specify the
        environment variables, additional initialization args, and expected instance
        attributes to check.
        """
        return {}, {}, {}

    def test_init_from_env(self) -> None:
        """Test initialization from environment variables.

        Relies on the `init_from_env_params` property.
        Test is skipped if that property is not set.

        ??? note "Troubleshooting"

            If this test fails, ensure that `init_from_env_params` is specified
            correctly and that model parameters are properly set from environment
            variables during initialization.
        """
        env_params, embeddings_params, expected_attrs = self.init_from_env_params
        if env_params:
            with mock.patch.dict(os.environ, env_params):
                model = self.embeddings_class(**embeddings_params)
            assert model is not None
            for k, expected in expected_attrs.items():
                actual = getattr(model, k)
                if isinstance(actual, SecretStr):
                    actual = actual.get_secret_value()
                assert actual == expected
